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Stat 35b: Introduction to Probability with Applications to Poker Outline for the day: Collect Hw4.

Stat 35b: Introduction to Probability with Applications to Poker Outline for the day: Collect Hw4. Random walk examples. Bayes’ rule example. Conditional probability examples. Hw4 solutions. Final Exam: Thursday, March 20, 11:30 AM - 2:30 PM, here in Royce 156.

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Stat 35b: Introduction to Probability with Applications to Poker Outline for the day: Collect Hw4.

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  1. Stat 35b: Introduction to Probability with Applications to Poker Outline for the day: Collect Hw4. Random walk examples. Bayes’ rule example. Conditional probability examples. Hw4 solutions. Final Exam: Thursday, March 20, 11:30 AM - 2:30 PM, here in Royce 156. It’s open book, plus 2 pages of notes. Bring a calculator and a pen or pencil. Submit your reviews of the course online via my.ucla.edu. There’s no R stuff on the final. Suggested problems from ch 4-7 to look at are 4.5, 4.6, 4.7, 4.8, 4.9, 4.13, 4.14, 4.16, 5.1, 5.2, 5.5, 5.6, 6.2, 6.4, 6.9, 6.10, 6.11, 6.12, 7.1, 7.2, 7.3, 7.4, 7.5, 7.8, 7.13, 7.14, 7.15.

  2. 1. Hand in HW4. 2. Random Walk example Suppose you start with 1 chip at time 0 and that your tournament is like a simple random walk, but if you hit 0 you are done. P(you have not hit zero by time 47)? We know that starting at 0, P(Y1 ≠ 0, Y2 ≠ 0, …, Y2n ≠ 0) = P(Y2n = 0). So, P(Y1 > 0, Y2 > 0, …, Y48 > 0) = ½ P(Y48 = 0) = ½ Choose(48,24)(½)48 = P(Y1 = 1, Y2 > 0, …, Y48 > 0) = P(start at 0 and win your first hand, and then stay above 0 for at least 47 more hands) = P(start at 0 and win your first hand) x P(from (1,1), stay above 0 for ≥ 47 more hands) = 1/2 P(starting with 1 chip, stay above 0 for at least 47 more hands). So, P(starting with 1 chip, stay above 0 for at least 47 hands) = Choose(48,24)(½)48 = 11.46%.

  3. Another random walk example. Suppose that a $10 winner-take-all tournament has 32 = 25 players. So, you need to double up 5 times to win. Winner gets $320. Suppose that on each hand of the tournament, you have probability p = 0.7 to double up, and with probability q = 0.3 you will be eliminated. What is your expected profit in the tournament? Your expected return = ($320) x P(win the tournament) + ($0) x P(you don’t win) = ($320) x 0.75 = $53.78. But it costs $10. So expected profit = $53.78 - $10 = $43.78.

  4. 3. Bayes’ rule example. Your opponent raises all-in before the flop. Suppose you think she would do that 80% of the time with AA, KK, or QQ, and she would do that 30% of the time with AK or AQ, and 1% of the time with anything else. Given only this, and not even your cards, what’s P(she has AK)? Given nothing, P(AK) = 16/C(52,2) = 16/1326. P(AA) = C(4,2)/C(52,2) = 6/1326. Using Bayes’ rule, P(AK | all-in) =. P(all-in | AK) * P(AK) , P(all-in|AK)P(AK) + P(all-in|AA)P(AA) + P(all-in|KK)P(KK) + … = . 30% x 16/1326 . [30%x16/1326] + [80%x6/1326] + [80%x6/1326] + [80%x6/1326] + [30%x16/1326] + [1% (1326-16-6-6-6-16)/1326)] (AK) (AA) (KK) (QQ) (AQ) (anything else) = 13.06%. Compare with 16/1326 ~ 1.21%.

  5. 4. Conditional prob. examples. Approximate P(SOMEONE has AA, given you have KK)? Out of your 8 opponents? Note that given that you have KK, P(player 2 has AA & player 3 has AA) = P(player 2 has AA) x P(player 3 has AA | player 2 has AA) = choose(4,2) / choose(50,2) x 1/choose(48,2) = 0.0000043, or 1 in 230,000. So, very little overlap! Given you have KK, P(someone has AA) = P(player2 has AA or player3 has AA or … or pl.9 has AA) ~ P(player2 has AA) + P(player3 has AA) + … + P(player9 has AA) = 8 x choose(4,2) / choose(50,2) = 3.9%, or 1 in 26. ----------- What is exactly P(SOMEONE has an Ace | you have KK)? (8 opponents) (or more than one ace) Given that you have KK, P(SOMEONE has an Ace) = 100% - P(nobody has an Ace). And P(nobody has an Ace) = choose(46,16)/choose(50,16) = 20.1%. So P(SOMEONE has an Ace) = 79.9%.

  6. 4. More conditional probability examples. P(You have AK | you have exactly one ace)? = P(You have AK and exactly one ace) / P(exactly one ace) = P(AK) / P(exactly one ace) P(A|B) = P(AB)/P(B). = (16/C(52,2)) ÷ (4x48/C(52,2)) = 4/48 = 8.33%. P(You have AK | you have at least one ace)? = P(You have AK and at least one ace) / P(at least one ace) = P(AK) / P(at least one ace) = (16/C(52,2)) ÷ (((4x48 + C(4,2))/C(52,2)) ~ 8.08%. P(You have AK | your FIRST care is an ace)? = 4/51 = 7.84%.

  7. 4. More conditional probability examples P(You have AK | you have exactly one ace)? = P(You have AK and exactly one ace) / P(exactly one ace) = P(AK) / P(exactly one ace) P(A|B) = P(AB)/P(B). = (16/C(52,2)) ÷ (4x48/C(52,2)) = 4/48 = 8.33%. P(You have AK | you have at least one ace)? = P(You have AK and at least one ace) / P(at least one ace) = P(AK) / P(at least one ace) = (16/C(52,2)) ÷ (((4x48 + C(4,2))/C(52,2)) ~ 8.08%. P(You have AK | your FIRST care is an ace)? = 4/51 = 7.84%.

  8. 5. Answers to hw4. 6.12. X and Y are ind, X is exp with mean 1/2, Y=1 with prob 1/3 and 2 with prob 2/3, and Z = XY. Find a) the pdf of Z, b) the expected value of Z, and c) the sd of Z. a) Let F be the cdf of Z. F(c) = P(XY ≤ c) = P(X ≤ c/Y) = 1/3 P(X ≤ c) + 2/3 P(X ≤ c/2) = 1/3 [1-exp(-2c)] + 2/3[1-exp(-c)], for c ≥ 0. Taking the derivative, f(c) = F'(c) = 2/3 exp(-2c) + 2/3 exp(-c), for c ≥ 0. b) The expected value of Z is ∫ c f(c) dc = 2/3 ∫ c exp(-2c) dc + 2/3 ∫ c exp(-c) dc. Integrating by parts, E(Z) = ∫vdu = uv - ∫vdu, where u = c and dv = exp(-2c)dc or exp(-c)dc, v = -exp(-2c)/2, or v = -exp(-c), so E(Z) = 2/3 [-c exp(-2c)/2 + ∫exp(-2c)/2 dc] + 2/3 [-c exp(-c) + ∫exp(-c)dc] = 2/3 [-c exp(-2c)/2 - exp(-2c)/4 - c exp(-c) - exp(-c)], evaluated from c = 0 to infinity, and at infinity everything converges to 0, so it’s -2/3 [0 - 1/4 - 0 - 1] = 2/3 * 5/4 = 5/6. Alternatively, without integrating by parts, we know that ∫ c [2exp(-2c)] dc is the expected value of an exponential random variable with parameter lambda = 2, and this expected value is 1/2. Similarly, ∫ c exp(-c) dc is the expected value of an exponential with lambda = 1, which is 1. So, E(Z) = 2/3 ∫ c exp(-2c) dc + 2/3 ∫ c exp(-c) dc = 2/3 (1/2) ∫ c [2exp(-2c)] dc + 2/3 (1) = 2/3 (1/2) (1/2) + 2/3 = 5/6. You could also use E(XY) = E(X)E(Y), which is true but we haven’t mentioned it. c) Var(Z) = E(Z^2) - (5/6)^2. E(Z^2) = ∫ c^2 f(c) dc = 2/3 ∫ c^2 exp(-2c) dc + 2/3 ∫ c^2 exp(-c) dc. One could do this by integrating by parts, or one could note that if X is exponential (lambda), then E(X^2) = 2/lambda^2, so ∫ c^2 [2exp(-2c)] dc = 2/(2^2) = 1/2, and ∫ c^2 exp(-c) dc 2/(1^2) = 2. Thus, E(Z^2) = ∫ c^2 f(c) dc = 2/3 ∫ c^2 exp(-2c) dc + 2/3 ∫ c^2 exp(-c) dc = 2/3 (1/2) ∫ c^2 [2exp(-2c)] dc + 2/3 ∫ c^2 exp(-c) dc = 2/3 (1/2) (1/2) + 2/3 (2) = 1/6 + 4/3 = 1.5. So, Var(Z) = 1.5 - (5/6)^2 = 54/36 - 25/36 = 29/36. SD(Z) = √(29/36) ~ 0.898.

  9. 7.2. X = # of face cards, Y = # of kings. What are a) E(Y)? b) E(Y|X)? c) P{E[Y|X] = 2/3}? a) E(Y) = 0 * P(0 kings) + 1 * P(1 king) + 2 * P(2 kings) = 0 + 1 * 4 * 48 / C(52,2) + 2 * C(4,2)/C(52,2) = 204/1326 ~ 15.38%. b) If X = 0, then Y = 0, so E[Y | X=0] = 0. E[Y | X = 1] = 0*P(Y=0 | X=1) + 1 * P(Y = 1 | X = 1) = 0 + 1*P(Y = 1 & X = 1)/P(X=1) = {4 * 40 / C(52,2)} ÷ {12 * 40 / C(52,2)} = 1/3. E[Y | X = 2] = 0*P(Y=0|X=2) + 1 * P(Y = 1 | X = 2) + 2 P(Y = 2 | X = 2) = 0 + 1*P(Y = 1 and X = 2)/P(X=2) + 2*P(Y = 2 and X = 2) / P(X=2) = 4*8/C(52,2) ÷ C(12,2)/C(52,2) + 2*C(4,2)/C(52,2) ÷ C(12,2)/C(52,2) = 32/66 + 12/66 = 44/66 = 2/3. c) P{E[Y|X] = 2/3} = P(X = 2) = C(12,2)/C(52,2) ~ 4.98%. 7.8. Negreanu lost $1.7 million in 1250 hands, with an SD per hand of $30,000. a) Find a 95% CI for µ, and b) If Negreanu keeps losing at this rate, how many more hands til the 95% CI doesn't contain 0? a) A 95% CI for µ = -$1.7 million/1250 +/- 1.96 ($30,000)/√1250 = -$1360 +/- about 1663. b) 1.96 ($30,000)/√n = 1360, so √n = 1.96(30,000)/1360, and n = {1.96(30,000)/1360}^2 ~ 1869. He's already played 1250, so he needs about 619 more hands at this rate til the CI doesn't contain 0.

  10. 7.14. You have 2 chips and your opponent has 4 chips. p = P(you gain a chip). a) If p = 0.52, what is P(win tournament)? b) Find p so that P(win tournament) = 0.5. c) If p = 0.75 and your opponent has 10 chips left, what is P(win tournament)? What if your opponent has 1,000 chips left? a) By Theorem 7.6.8, P(win tournament) = (1-r^k)/(1-r^n), where r = q/p = 0.48/0.52 ~ 92.31%. So, P(win tournament) = (1-92.31%^2) / (1-92.31%^6) ~ 38.79%. b) We want to find p so that (1-r^2)/(1-r^6) = 1/2. That is, 2(1-r^2) = 1 - r^6, so -r^6 + 2r^2 - 1 = 0. Letting x = r^2, this means -x^3 + 2x -1 = 0, so (x-1)(-x^2 - x + 1) = 0. There are 3 solutions to this: x = 1, or x^2 + x - 1 = 0, so x = (-1 +/- √(1 +4))/2 = √5/2 - 1/2 ~ 0.618, or -√5/2 - 1/2 ~ -1.618. x = r^2, so r can't be -1.618. Also, r can't be 1 because r = q/p, so r = 1 implies q = p = 0.5, which is not allowed in the conditions of Theorem 7.6.8. So, x must be 0.618 and r = √0.618 = 0.786. (1-p)/p = 0.786, so 1-p = p(0.786), p(1+0.786) = 1. p = 1/(1.786) = 55.99%. c) If p = 0.75, then r = q/p = 0.25/0.75 = 1/3. If the opponent has 10 chips, then P(win tournament) = (1-r^2)/(1-r^12) = (1-1/3^2) / (1-1/3^12) ~ 88.88906%. If the opponent has 1000 chips, then P(win tournament) = (1-1/3^2) / (1-1/3^1002) ~ 88.88889%.

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